__author__ = "tylin"
__version__ = "2.0"
# Interface for accessing the Microsoft COCO dataset.

# Microsoft COCO is a large image dataset designed for object detection,
# segmentation, and caption generation. pycocotools is a Python API that
# assists in loading, parsing and visualizing the annotations in COCO.
# Please visit http://mscoco.org/ for more information on COCO, including
# for the data, paper, and tutorials. The exact format of the annotations
# is also described on the COCO website. For example usage of the pycocotools
# please see pycocotools_demo.ipynb. In addition to this API, please download both
# the COCO images and annotations in order to run the demo.

# An alternative to using the API is to load the annotations directly
# into Python dictionary
# Using the API provides additional utility functions. Note that this API
# supports both *instance* and *caption* annotations. In the case of
# captions not all functions are defined (e.g. categories are undefined).

# The following API functions are defined:
#  COCO       - COCO api class that loads COCO annotation file and prepare data structures.
#  decodeMask - Decode binary mask M encoded via run-length encoding.
#  encodeMask - Encode binary mask M using run-length encoding.
#  getAnnIds  - Get ann ids that satisfy given filter conditions.
#  getCatIds  - Get cat ids that satisfy given filter conditions.
#  getImgIds  - Get img ids that satisfy given filter conditions.
#  loadAnns   - Load anns with the specified ids.
#  loadCats   - Load cats with the specified ids.
#  loadImgs   - Load imgs with the specified ids.
#  annToMask  - Convert segmentation in an annotation to binary mask.
#  showAnns   - Display the specified annotations.
#  loadRes    - Load algorithm results and create API for accessing them.
#  download   - Download COCO images from mscoco.org server.
# Throughout the API "ann"=annotation, "cat"=category, and "img"=image.
# Help on each functions can be accessed by: "help COCO>function".

# See also COCO>decodeMask,
# COCO>encodeMask, COCO>getAnnIds, COCO>getCatIds,
# COCO>getImgIds, COCO>loadAnns, COCO>loadCats,
# COCO>loadImgs, COCO>annToMask, COCO>showAnns

# Microsoft COCO Toolbox.      version 2.0
# Data, paper, and tutorials available at:  http://mscoco.org/
# Code written by Piotr Dollar and Tsung-Yi Lin, 2014.
# Licensed under the Simplified BSD License [see bsd.txt]

import json
import time
import matplotlib.pyplot as plt
from matplotlib.collections import PatchCollection
from matplotlib.patches import Polygon
import numpy as np
import copy
import itertools
from pycocotools import mask as maskUtils
import os
from collections import defaultdict
import sys

PYTHON_VERSION = sys.version_info[0]
if PYTHON_VERSION == 2:
    from urllib import urlretrieve
elif PYTHON_VERSION == 3:
    from urllib.request import urlretrieve


def _isArrayLike(obj):
    return hasattr(obj, "__iter__") and hasattr(obj, "__len__")


class COCO:
    def __init__(self, annotation_file=None):
        """
        Constructor of Microsoft COCO helper class for reading and visualizing annotations.
        :param annotation_file (str): location of annotation file
        :param image_folder (str): location to the folder that hosts images.
        :return:
        """
        # load dataset
        self.dataset, self.anns, self.cats, self.imgs = dict(), dict(), dict(), dict()
        self.imgToAnns, self.catToImgs = defaultdict(list), defaultdict(list)
        if not annotation_file is None:
            print("loading annotations into memory...")
            tic = time.time()
            dataset = json.load(open(annotation_file, "r"))
            assert (
                isinstance(dataset, dict)
            ), "annotation file format {} not supported".format(type(dataset))
            print("Done (t={:0.2f}s)".format(time.time() - tic))
            self.dataset = dataset
            self.createIndex()

    def createIndex(self):
        # create index
        print("creating index...")
        anns, cats, imgs = {}, {}, {}
        imgToAnns, catToImgs = defaultdict(list), defaultdict(list)
        if "annotations" in self.dataset:
            for ann in self.dataset["annotations"]:
                imgToAnns[ann["image_id"]].append(ann)
                anns[ann["id"]] = ann

        if "images" in self.dataset:
            for img in self.dataset["images"]:
                imgs[img["id"]] = img

        if "categories" in self.dataset:
            for cat in self.dataset["categories"]:
                cats[cat["id"]] = cat

        if "annotations" in self.dataset and "categories" in self.dataset:
            for ann in self.dataset["annotations"]:
                catToImgs[ann["category_id"]].append(ann["image_id"])

        print("index created!")

        # create class members
        self.anns = anns
        self.imgToAnns = imgToAnns
        self.catToImgs = catToImgs
        self.imgs = imgs
        self.cats = cats

    def info(self):
        """
        Print information about the annotation file.
        :return:
        """
        for key, value in self.dataset["info"].items():
            print("{}: {}".format(key, value))

    def getAnnIds(self, imgIds=[], catIds=[], areaRng=[], iscrowd=None):
        """
        Get ann ids that satisfy given filter conditions. default skips that filter
        :param imgIds  (int array)     : get anns for given imgs
               catIds  (int array)     : get anns for given cats
               areaRng (float array)   : get anns for given area range (e.g. [0 inf])
               iscrowd (boolean)       : get anns for given crowd label (False or True)
        :return: ids (int array)       : integer array of ann ids
        """
        imgIds = imgIds if _isArrayLike(imgIds) else [imgIds]
        catIds = catIds if _isArrayLike(catIds) else [catIds]

        if len(imgIds) == len(catIds) == len(areaRng) == 0:
            anns = self.dataset["annotations"]
        else:
            if not len(imgIds) == 0:
                lists = [
                    self.imgToAnns[imgId] for imgId in imgIds if imgId in self.imgToAnns
                ]
                anns = list(itertools.chain.from_iterable(lists))
            else:
                anns = self.dataset["annotations"]
            anns = (
                anns
                if len(catIds) == 0
                else [ann for ann in anns if ann["category_id"] in catIds]
            )
            anns = (
                anns
                if len(areaRng) == 0
                else [
                    ann
                    for ann in anns
                    if ann["area"] > areaRng[0] and ann["area"] < areaRng[1]
                ]
            )
        if not iscrowd is None:
            ids = [ann["id"] for ann in anns if ann["iscrowd"] == iscrowd]
        else:
            ids = [ann["id"] for ann in anns]
        return ids

    def getCatIds(self, catNms=[], supNms=[], catIds=[]):
        """
        filtering parameters. default skips that filter.
        :param catNms (str array)  : get cats for given cat names
        :param supNms (str array)  : get cats for given supercategory names
        :param catIds (int array)  : get cats for given cat ids
        :return: ids (int array)   : integer array of cat ids
        """
        catNms = catNms if _isArrayLike(catNms) else [catNms]
        supNms = supNms if _isArrayLike(supNms) else [supNms]
        catIds = catIds if _isArrayLike(catIds) else [catIds]

        if len(catNms) == len(supNms) == len(catIds) == 0:
            cats = self.dataset["categories"]
        else:
            cats = self.dataset["categories"]
            cats = (
                cats
                if len(catNms) == 0
                else [cat for cat in cats if cat["name"] in catNms]
            )
            cats = (
                cats
                if len(supNms) == 0
                else [cat for cat in cats if cat["supercategory"] in supNms]
            )
            cats = (
                cats
                if len(catIds) == 0
                else [cat for cat in cats if cat["id"] in catIds]
            )
        ids = [cat["id"] for cat in cats]
        return ids

    def getImgIds(self, imgIds=[], catIds=[]):
        """
        Get img ids that satisfy given filter conditions.
        :param imgIds (int array) : get imgs for given ids
        :param catIds (int array) : get imgs with all given cats
        :return: ids (int array)  : integer array of img ids
        """
        imgIds = imgIds if _isArrayLike(imgIds) else [imgIds]
        catIds = catIds if _isArrayLike(catIds) else [catIds]

        if len(imgIds) == len(catIds) == 0:
            ids = self.imgs.keys()
        else:
            ids = set(imgIds)
            for i, catId in enumerate(catIds):
                if i == 0 and len(ids) == 0:
                    ids = set(self.catToImgs[catId])
                else:
                    ids &= set(self.catToImgs[catId])
        return list(ids)

    def loadAnns(self, ids=[]):
        """
        Load anns with the specified ids.
        :param ids (int array)       : integer ids specifying anns
        :return: anns (object array) : loaded ann objects
        """
        if _isArrayLike(ids):
            return [self.anns[id] for id in ids]
        elif isinstance(ids, int):
            return [self.anns[ids]]

    def loadCats(self, ids=[]):
        """
        Load cats with the specified ids.
        :param ids (int array)       : integer ids specifying cats
        :return: cats (object array) : loaded cat objects
        """
        if _isArrayLike(ids):
            return [self.cats[id] for id in ids]
        elif isinstance(ids, int):
            return [self.cats[ids]]

    def loadImgs(self, ids=[]):
        """
        Load anns with the specified ids.
        :param ids (int array)       : integer ids specifying img
        :return: imgs (object array) : loaded img objects
        """
        if _isArrayLike(ids):
            return [self.imgs[id] for id in ids]
        elif isinstance(ids, int):
            return [self.imgs[ids]]

    def showAnns(self, anns):
        """
        Display the specified annotations.
        :param anns (array of object): annotations to display
        :return: None
        """
        if len(anns) == 0:
            return 0
        if "segmentation" in anns[0] or "keypoints" in anns[0]:
            datasetType = "instances"
        elif "caption" in anns[0]:
            datasetType = "captions"
        else:
            raise Exception("datasetType not supported")
        if datasetType == "instances":
            ax = plt.gca()
            ax.set_autoscale_on(False)
            polygons = []
            color = []
            for ann in anns:
                c = (np.random.random((1, 3)) * 0.6 + 0.4).tolist()[0]
                if "segmentation" in ann:
                    if isinstance(ann["segmentation"], list):
                        # polygon
                        for seg in ann["segmentation"]:
                            poly = np.array(seg).reshape(
                                (int(len(seg) / 2), 2))
                            polygons.append(Polygon(poly))
                            color.append(c)
                    else:
                        # mask
                        t = self.imgs[ann["image_id"]]
                        if isinstance(ann["segmentation"]["counts"], list):
                            rle = maskUtils.frPyObjects(
                                [ann["segmentation"]], t["height"], t["width"]
                            )
                        else:
                            rle = [ann["segmentation"]]
                        m = maskUtils.decode(rle)
                        img = np.ones((m.shape[0], m.shape[1], 3))
                        if ann["iscrowd"] == 1:
                            color_mask = np.array([2.0, 166.0, 101.0]) / 255
                        if ann["iscrowd"] == 0:
                            color_mask = np.random.random((1, 3)).tolist()[0]
                        for i in range(3):
                            img[:, :, i] = color_mask[i]
                        ax.imshow(np.dstack((img, m * 0.5)))
                if "keypoints" in ann and isinstance(ann["keypoints"], list):
                    # turn skeleton into zero-based index
                    sks = np.array(
                        self.loadCats(
                            ann["category_id"])[0]["skeleton"]) - 1
                    kp = np.array(ann["keypoints"])
                    x = kp[0::3]
                    y = kp[1::3]
                    v = kp[2::3]
                    for sk in sks:
                        if np.all(v[sk] > 0):
                            plt.plot(x[sk], y[sk], linewidth=3, color=c)
                    plt.plot(
                        x[v > 0],
                        y[v > 0],
                        "o",
                        markersize=8,
                        markerfacecolor=c,
                        markeredgecolor="k",
                        markeredgewidth=2,
                    )
                    plt.plot(
                        x[v > 1],
                        y[v > 1],
                        "o",
                        markersize=8,
                        markerfacecolor=c,
                        markeredgecolor=c,
                        markeredgewidth=2,
                    )
            p = PatchCollection(
                polygons,
                facecolor=color,
                linewidths=0,
                alpha=0.4)
            ax.add_collection(p)
            p = PatchCollection(
                polygons, facecolor="none", edgecolors=color, linewidths=2
            )
            ax.add_collection(p)
        elif datasetType == "captions":
            for ann in anns:
                print(ann["caption"])

    def loadRes(self, resFile):
        """
        Load result file and return a result api object.
        :param   resFile (str)     : file name of result file
        :return: res (obj)         : result api object
        """
        res = COCO()
        res.dataset["images"] = [img for img in self.dataset["images"]]

        print("Loading and preparing results...")
        tic = time.time()
        if isinstance(resFile, str):  # or type(resFile) == unicode:
            anns = json.load(open(resFile))
        elif isinstance(resFile, np.ndarray):
            anns = self.loadNumpyAnnotations(resFile)
        else:
            anns = resFile
        assert isinstance(anns, list), "results in not an array of objects"
        annsImgIds = [ann["image_id"] for ann in anns]
        assert set(annsImgIds) == (
            set(annsImgIds) & set(self.getImgIds())
        ), "Results do not correspond to current coco set"
        if "caption" in anns[0]:
            imgIds = set([img["id"] for img in res.dataset["images"]]) & set(
                [ann["image_id"] for ann in anns]
            )
            res.dataset["images"] = [
                img for img in res.dataset["images"] if img["id"] in imgIds
            ]
            for id, ann in enumerate(anns):
                ann["id"] = id + 1
        elif "bbox" in anns[0] and not anns[0]["bbox"] == []:
            res.dataset["categories"] = copy.deepcopy(
                self.dataset["categories"])
            for id, ann in enumerate(anns):
                bb = ann["bbox"]
                x1, x2, y1, y2 = [bb[0], bb[0] + bb[2], bb[1], bb[1] + bb[3]]
                if not "segmentation" in ann:
                    ann["segmentation"] = [[x1, y1, x1, y2, x2, y2, x2, y1]]
                ann["area"] = bb[2] * bb[3]
                ann["id"] = id + 1
                ann["iscrowd"] = 0
        elif "segmentation" in anns[0]:
            res.dataset["categories"] = copy.deepcopy(
                self.dataset["categories"])
            for id, ann in enumerate(anns):
                # now only support compressed RLE format as segmentation
                # results
                ann["area"] = maskUtils.area(ann["segmentation"])
                if not "bbox" in ann:
                    ann["bbox"] = maskUtils.toBbox(ann["segmentation"])
                ann["id"] = id + 1
                ann["iscrowd"] = 0
        elif "keypoints" in anns[0]:
            res.dataset["categories"] = copy.deepcopy(
                self.dataset["categories"])
            for id, ann in enumerate(anns):
                s = ann["keypoints"]
                x = s[0::3]
                y = s[1::3]
                x0, x1, y0, y1 = np.min(x), np.max(x), np.min(y), np.max(y)
                ann["area"] = (x1 - x0) * (y1 - y0)
                ann["id"] = id + 1
                ann["bbox"] = [x0, y0, x1 - x0, y1 - y0]
        print("DONE (t={:0.2f}s)".format(time.time() - tic))

        res.dataset["annotations"] = anns
        res.createIndex()
        return res

    def download(self, tarDir=None, imgIds=[]):
        """
        Download COCO images from mscoco.org server.
        :param tarDir (str): COCO results directory name
               imgIds (list): images to be downloaded
        :return:
        """
        if tarDir is None:
            print("Please specify target directory")
            return -1
        if len(imgIds) == 0:
            imgs = self.imgs.values()
        else:
            imgs = self.loadImgs(imgIds)
        N = len(imgs)
        if not os.path.exists(tarDir):
            os.makedirs(tarDir)
        for i, img in enumerate(imgs):
            tic = time.time()
            fname = os.path.join(tarDir, img["file_name"])
            if not os.path.exists(fname):
                urlretrieve(img["coco_url"], fname)
            print(
                "downloaded {}/{} images (t={:0.1f}s)".format(i,
                                                              N, time.time() - tic)
            )

    def loadNumpyAnnotations(self, data):
        """
        Convert result data from a numpy array [Nx7] where each row contains {imageID,x1,y1,w,h,score,class}
        :param  data (numpy.ndarray)
        :return: annotations (python nested list)
        """
        print("Converting ndarray to lists...")
        assert isinstance(data, np.ndarray)
        print(data.shape)
        assert data.shape[1] == 7
        N = data.shape[0]
        ann = []
        for i in range(N):
            if i % 1000000 == 0:
                print("{}/{}".format(i, N))
            ann += [
                {
                    "image_id": int(data[i, 0]),
                    "bbox": [data[i, 1], data[i, 2], data[i, 3], data[i, 4]],
                    "score": data[i, 5],
                    "category_id": int(data[i, 6]),
                }
            ]
        return ann

    def annToRLE(self, ann):
        """
        Convert annotation which can be polygons, uncompressed RLE to RLE.
        :return: binary mask (numpy 2D array)
        """
        t = self.imgs[ann["image_id"]]
        h, w = t["height"], t["width"]
        segm = ann["segmentation"]
        if isinstance(segm, list):
            # polygon -- a single object might consist of multiple parts
            # we merge all parts into one mask rle code
            rles = maskUtils.frPyObjects(segm, h, w)
            rle = maskUtils.merge(rles)
        elif isinstance(segm["counts"], list):
            # uncompressed RLE
            rle = maskUtils.frPyObjects(segm, h, w)
        else:
            # rle
            rle = ann["segmentation"]
        return rle

    def annToMask(self, ann):
        """
        Convert annotation which can be polygons, uncompressed RLE, or RLE to binary mask.
        :return: binary mask (numpy 2D array)
        """
        rle = self.annToRLE(ann)
        m = maskUtils.decode(rle)
        return m
